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Lag Selection for Univariate Time Series Forecasting Using Deep Learning: An Empirical Study

José Leites 1
Vitor Cerqueira 2, 3
Carlos Soares 2, 3, 4
Publication typeBook Chapter
Publication date2024-11-16
scimago Q2
SJR0.352
CiteScore2.4
Impact factor
ISSN03029743, 16113349, 18612075, 18612083
Abstract
Most forecasting methods use recent past observations (lags) to model the future values of univariate time series. Selecting an adequate number of lags is important for training accurate forecasting models. Several approaches and heuristics have been devised to solve this task. However, there is no consensus about what the best approach is. Besides, lag selection procedures have been developed based on local models and classical forecasting techniques such as ARIMA. We bridge this gap in the literature by carrying out an extensive empirical analysis of different lag selection methods. We focus on deep learning methods trained in a global approach, i.e., on datasets comprising multiple univariate time series. Specifically, we use NHITS, a recently proposed architecture that has shown competitive forecasting performance. The experiments were carried out using three benchmark databases that contain a total of 2411 univariate time series. The results indicate that the lag size is a relevant parameter for accurate forecasts. In particular, excessively small or excessively large lag sizes have a considerable negative impact on forecasting performance. Cross-validation approaches show the best performance for lag selection, but this performance is comparable with simple heuristics.
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Leites J. et al. Lag Selection for Univariate Time Series Forecasting Using Deep Learning: An Empirical Study // Lecture Notes in Computer Science. 2024. pp. 321-332.
GOST all authors (up to 50) Copy
Leites J., Cerqueira V., Soares C. Lag Selection for Univariate Time Series Forecasting Using Deep Learning: An Empirical Study // Lecture Notes in Computer Science. 2024. pp. 321-332.
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RIS Copy
TY - GENERIC
DO - 10.1007/978-3-031-73503-5_26
UR - https://link.springer.com/10.1007/978-3-031-73503-5_26
TI - Lag Selection for Univariate Time Series Forecasting Using Deep Learning: An Empirical Study
T2 - Lecture Notes in Computer Science
AU - Leites, José
AU - Cerqueira, Vitor
AU - Soares, Carlos
PY - 2024
DA - 2024/11/16
PB - Springer Nature
SP - 321-332
SN - 0302-9743
SN - 1611-3349
SN - 1861-2075
SN - 1861-2083
ER -
BibTex
Cite this
BibTex (up to 50 authors) Copy
@incollection{2024_Leites,
author = {José Leites and Vitor Cerqueira and Carlos Soares},
title = {Lag Selection for Univariate Time Series Forecasting Using Deep Learning: An Empirical Study},
publisher = {Springer Nature},
year = {2024},
pages = {321--332},
month = {nov}
}